Model Uncertainty and Bayesian Model Averaged Benchmark Dose Estimation for Continuous Data

被引:31
|
作者
Shao, Kan [1 ]
Gift, Jeffrey S. [1 ]
机构
[1] US EPA, Natl Ctr Environm Assessment, Res Triangle Pk, NC 27711 USA
关键词
Bayesian model averaging; benchmark dose; continuous data; model uncertainty; RISK-ASSESSMENT; SELECTION; INFORMATION; CRITERION; INFERENCE; RESPONSES; LIMITS;
D O I
10.1111/risa.12078
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
The benchmark dose (BMD) approach has gained acceptance as a valuable risk assessment tool, but risk assessors still face significant challenges associated with selecting an appropriate BMD/BMDL estimate from the results of a set of acceptable dose-response models. Current approaches do not explicitly address model uncertainty, and there is an existing need to more fully inform health risk assessors in this regard. In this study, a Bayesian model averaging (BMA) BMD estimation method taking model uncertainty into account is proposed as an alternative to current BMD estimation approaches for continuous data. Using the hybrid method proposed by Crump, two strategies of BMA, including both maximum likelihood estimation based and Markov Chain Monte Carlo based methods, are first applied as a demonstration to calculate model averaged BMD estimates from real continuous dose-response data. The outcomes from the example data sets examined suggest that the BMA BMD estimates have higher reliability than the estimates from the individual models with highest posterior weight in terms of higher BMDL and smaller 90th percentile intervals. In addition, a simulation study is performed to evaluate the accuracy of the BMA BMD estimator. The results from the simulation study recommend that the BMA BMD estimates have smaller bias than the BMDs selected using other criteria. To further validate the BMA method, some technical issues, including the selection of models and the use of bootstrap methods for BMDL derivation, need further investigation over a more extensive, representative set of dose-response data.
引用
收藏
页码:101 / 120
页数:20
相关论文
共 50 条
  • [31] Reducing uncertainty in dose-response assessments by incorporating Bayesian benchmark dose modeling and in vitro data on population variability
    Lu, En-Hsuan
    Ford, Lucie C.
    Rusyn, Ivan
    Chiu, Weihsueh A.
    [J]. RISK ANALYSIS, 2024,
  • [32] Toward reduction of model uncertainty: Integration of Bayesian model averaging and data assimilation
    Parrish, Mark A.
    Moradkhani, Hamid
    DeChant, Caleb M.
    [J]. WATER RESOURCES RESEARCH, 2012, 48
  • [33] Information-theoretic model-averaged benchmark dose analysis in environmental risk assessment
    Piegorsch, Walter W.
    An, Lingling
    Wickens, Alissa A.
    West, R. Webster
    Pena, Edsel A.
    Wu, Wensong
    [J]. ENVIRONMETRICS, 2013, 24 (03) : 143 - 157
  • [34] Benchmark priors for Bayesian model averaging
    Fernández, C
    Ley, E
    Steel, MFJ
    [J]. JOURNAL OF ECONOMETRICS, 2001, 100 (02) : 381 - 427
  • [35] An extended and unified modeling framework for benchmark dose estimation for both continuous and binary data
    Aerts, Marc
    Wheeler, Matthew W.
    Abrahantes, Jose Cortinas
    [J]. ENVIRONMETRICS, 2020, 31 (07)
  • [36] A Web-Based System for Bayesian Benchmark Dose Estimation
    Shao, Kan
    Shapiro, AndrewJ.
    [J]. ENVIRONMENTAL HEALTH PERSPECTIVES, 2018, 126 (01)
  • [37] Bayesian nonparametric estimation in the current status continuous mark model
    Jongbloed, Geurt
    van der Meulen, Frank H.
    Pang, Lixue
    [J]. SCANDINAVIAN JOURNAL OF STATISTICS, 2022, 49 (03) : 1329 - 1352
  • [38] A Bayesian Semiparametric Model for Radiation Dose-Response Estimation
    Furukawa, Kyoji
    Misumi, Munechika
    Cologne, John B.
    Cullings, Harry M.
    [J]. RISK ANALYSIS, 2016, 36 (06) : 1211 - 1223
  • [39] A new model function for continuous data sets in health risk assessment of chemicals using the benchmark dose concept
    Kalliomaa, K
    Haag-Gronlund, M
    Victorin, K
    [J]. REGULATORY TOXICOLOGY AND PHARMACOLOGY, 1998, 27 (02) : 98 - 107
  • [40] Bayesian estimation for longitudinal data in a joint model with HPCs
    Geng, Shuli
    Zhang, Lixin
    [J]. STATISTICS, 2023, 57 (02) : 375 - 387